Abstract
Despite technological advancement, subsurface studies continue to encounter uncertainties caused by structural complexities and data noise, which can result in inaccurate seismic interpretation and drilling locations. Although machine learning holds great potential by enabling the simultaneous analysis of large datasets, its effectiveness is often compromised by data noise and ambiguity, which can degrade the accuracy of the algorithms. Hence, this research incorporates uncertainty quantification into attention mechanism neural network to produce more reliable outcomes in seismic interpretation and stratigraphic mapping. The methodology is also benchmarked against other uncertainty quantification methods such as dropout and randomized ensemble techniques, followed by an evaluation using the Brier score.
Original language | English |
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Title of host publication | SPE Annual Technical Conference and Exhibition 2024 |
Publisher | Society of Petroleum Engineers |
Volume | 7 |
ISBN (Print) | 9781959025375 |
DOIs | |
Publication status | Published - 20 Sept 2024 |
Event | SPE Annual Technical Conference and Exhibition 2024 - New Orleans, United States Duration: 23 Sept 2024 → 25 Sept 2024 https://www.atce.org/?utm_source=spe.org&utm_medium=internal&utm_campaign=24ATCE&utm_content=SPE%20Website%20Events%20Calendar&_ga=2.265782479.1506817939.1727780053-1973003736.1727780053 |
Conference
Conference | SPE Annual Technical Conference and Exhibition 2024 |
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Country/Territory | United States |
City | New Orleans |
Period | 23/09/24 → 25/09/24 |
Internet address |
Keywords
- geology
- neural network
- stratigraphy
- artificial intelligence
- geologist
- risk management
- quantification
- geological subdiscipline
- accuracy
- probability